DeepTMHMM predicts alpha and beta transmembrane proteins using deep neural networks

biorxiv(2022)

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摘要
Transmembrane proteins span the lipid bilayer and are divided into two major structural classes, namely alpha helical and beta barrels. We introduce DeepTMHMM, a deep learning protein language model-based algorithm that can detect and predict the topology of both alpha helical and beta barrels proteins with unprecedented accuracy. DeepTMHMM (https://dtu.biolib.com/DeepTMHMM) scales to proteomes and covers all domains of life, which makes it ideal for metagenomics analyses. ### Competing Interest Statement A version of DeepTMHMM has been commercialized by the Technical University of Denmark - DTU (it is provided for a fee to commercial users). The revenue from these commercial sales is divided between the program developers and DTU.
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关键词
beta transmembrane proteins,deeptmhmm neural networks,neural networks
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